パッケージ: r-cran-bridgesampling (0.8-1-1)
r-cran-bridgesampling に関するリンク
Trisquel の資源:
r-cran-bridgesampling ソースパッケージをダウンロード:
- [r-cran-bridgesampling_0.8-1-1.dsc]
- [r-cran-bridgesampling_0.8-1.orig.tar.gz]
- [r-cran-bridgesampling_0.8-1-1.debian.tar.xz]
メンテナ:
Original Maintainers:
- Debian R Packages Maintainers
- Andreas Tille
外部の資源:
- ホームページ [cran.r-project.org]
類似のパッケージ:
GNU R bridge sampling for marginal likelihoods and Bayes factors
Provides functions for estimating marginal likelihoods, Bayes factors, posterior model probabilities, and normalizing constants in general, via different versions of bridge sampling (Meng & Wong, 1996, <http://www3.stat.sinica.edu.tw/statistica/j6n4/j6n43/j6n43.htm>).
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